Back to Basics for Bayesian Model Building in Genomic Selection

Author:

Kärkkäinen Hanni P1,Sillanpää Mikko J123

Affiliation:

1. Department of Agricultural Sciences and

2. Departments of Mathematical Sciences and Biology, University of Oulu, Oulu FIN-90014, Finland

3. Department of Mathematics and Statistics, University of Helsinki, Helsinki FIN-00014, Finland, and

Abstract

Abstract Numerous Bayesian methods of phenotype prediction and genomic breeding value estimation based on multilocus association models have been proposed. Computationally the methods have been based either on Markov chain Monte Carlo or on faster maximum a posteriori estimation. The demand for more accurate and more efficient estimation has led to the rapid emergence of workable methods, unfortunately at the expense of well-defined principles for Bayesian model building. In this article we go back to the basics and build a Bayesian multilocus association model for quantitative and binary traits with carefully defined hierarchical parameterization of Student’s t and Laplace priors. In this treatment we consider alternative model structures, using indicator variables and polygenic terms. We make the most of the conjugate analysis, enabled by the hierarchical formulation of the prior densities, by deriving the fully conditional posterior densities of the parameters and using the acquired known distributions in building fast generalized expectation-maximization estimation algorithms.

Publisher

Oxford University Press (OUP)

Subject

Genetics

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